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View metadata, citation and similar papers at core.ac.uk brought to you by CORE provided by DSpace at Tartu University Library UNIVERSITY OF TARTU School of Economics and Business Administration Chair of Finance and Accounting Martin Promen TRADING TRENDS USING FIBONACCI CORRECTION LEVELS AND JAPANESE CANDLESTICK PATTERNS IN THE EXAMPLE OF STANDARD & POOR'S 500 INDEX Bachelor Thesis Thesis supervisor: Allan Teder, MA Tartu 2018 Recommended for defense ...................................................................... (supervisor’s signature) Accepted for defense “ “ ............................... 2018 Head of Chair, Chair of Finance and Accounting ............................................................ (Head of Chair’s name and signature) I have written the Bachelor thesis independently. All works and major viewpoints of the other authors, data from other sources of literature and elsewhere used for writing this thesis have been referenced. .............................................................................. (Author’s signature) TABLE OF CONTENTS INTRODUCTION ............................................................................................................ 5 1. CANDLESTICK PATTERNS AND FIBONACCI CORRECTION LEVELS IN INVESTMENT STRATEGIES ........................................................................................ 8 1.1 Candlestick Pattern Formations in Technical Analysis ........................................... 8 1.2. Fibonacci Correction Levels in Technical Analysis ............................................. 16 2. EMPIRICAL TESTING OF FIBONACCI RETRACEMENTS AND CANDLESTICK PATTERNS WITH A STRATEGY EXAMPLE ........................................................... 24 2.1. Data and Methodology ......................................................................................... 24 2.2. Testing the Candlestick Pattern Based Strategy ................................................... 28 2.3. Testing the Candlestick Pattern Strategy in Conjunction with Fibonacci Correction Levels .......................................................................................................................... 31 CONCLUSIONS ............................................................................................................. 39 REFERENCES ................................................................................................................ 42 APPENDIXES ................................................................................................................ 45 Appendix 1. ................................................................................................................. 45 Appendix 2. ................................................................................................................. 52 Appendix 3. ................................................................................................................. 53 KOKKUVÕTE ................................................................................................................ 54 INTRODUCTION In the times of computer trading and abundant information, banks and investment funds use intricate computer algorithms to predict price movements on the markets. These institutions are in a great need to constantly improve their trading systems and strategies which can outperform the market not only marginally but produce a sizeable profit for their stakeholders. At the same time, non-institutional investors (namely investors trading self-accrued funds) who are far less researched are avid users of complex charting analysis to either generate or confirm their trading decisions (Roscoe et al., 2009). The testing and evaluation of such a charting strategy is the aim of this research. Such algorithm, if proved profitable, can help traders around the world, both institutional and private, to develop their own custom trading systems based on current market trends and psychology. Mayall (2006) has divided charting-based trading (sample of non-professionals) into four rough categories which range from “scientific” system where traders try to eliminate as much human contact with trading decisions as possible to “trading as an art” where visual observations and trader intuition play a central role in decision making. This nomenclature was later formalized by Roscoe and Howorth (2009) along with conclusions that the interpretative activity by traders and investors plays an important role in the efficacy of technical analysis (charting). They also suggested that charting has power and importance to users as a heuristic device, regardless of its effectiveness in generating profits. The trading method tested in this work explores the non-interpretative charting style (decisions based on a computer algorithm) and is based on two seemingly very different indicators. One of these indicators is Fibonacci correction levels, which are based on the works of Leonardo Fibonacci, namely his renowned work “The Book of Calculation” 5
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